In this paper we present AIDA, which is an active inference-based agent that iteratively designs a personalized audio processing algorithm through situated interactions with a human client. The target application of AIDA is to propose on-the-spot the most interesting alternative values for the tuning parameters of a hearing aid (HA) algorithm, whenever a HA client is not satisfied with their HA performance. AIDA interprets searching for the "most interesting alternative" as an issue of optimal (acoustic) context-aware Bayesian trial design. In computational terms, AIDA is realized as an active inference-based agent with an Expected Free Energy criterion for trial design. This type of architecture is inspired by neuro-economic models on efficient (Bayesian) trial design in brains and implies that AIDA comprises generative probabilistic models for acoustic signals and user responses. We propose a novel generative model for acoustic signals as a sum of time-varying auto-regressive filters and a user response model based on a Gaussian Process Classifier. The full AIDA agent has been implemented in a factor graph for the generative model and all tasks (parameter learning, acoustic context classification, trial design, etc.) are realized by variational message passing on the factor graph. All verification and validation experiments and demonstrations are freely accessible at our GitHub repository.
翻译:在本文中,我们介绍AIDA,AIDA是一种积极的基于推断的代理物,它通过与人类客户进行定位的互动,迭接地设计个人化的音频处理算法,AIDA的目标应用是,当HA客户对其HA性能不满意时,就现场提出最有趣的助听算法调参数替代值。AIDA将寻找“最有趣的替代物”解释为一个最佳(声学)反向背景过滤器和用户反应模型。在计算术语中,AIDA是作为一个具有预期自由能源标准的主动推论代理物实现的,用于试验设计。AIDA是受大脑高效(Bayesian)试验设计中神经经济模型启发的,这意味着AIDA包括用于声学信号和用户反应的基因化预测性预测性预测性模型。我们提出了一个新的声学信号模型,作为时间变化自动反向过滤器和用户反应模型,以Gaussian进程分类为根据。AIDA正式代理商已在可理解性模型和可理解性图像测试的所有任务中采用要素图式设计模型和可理解性测试测试。